{
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Your deep learning journey"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Deep learning is for everyone"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Neural networks: a brief history"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## What you will learn"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Who we are"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## How to learn deep learning"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Your projects and your mindset"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## The software: PyTorch, fastai, and Jupyter (and why it doesn't matter)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Your first model"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Getting a GPU deep learning server"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Running your first notebook"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/html": [
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: left;\">\n",
       "      <th>epoch</th>\n",
       "      <th>train_loss</th>\n",
       "      <th>valid_loss</th>\n",
       "      <th>error_rate</th>\n",
       "      <th>time</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <td>0</td>\n",
       "      <td>0.186732</td>\n",
       "      <td>0.019649</td>\n",
       "      <td>0.007442</td>\n",
       "      <td>00:14</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>"
      ],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "text/html": [
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: left;\">\n",
       "      <th>epoch</th>\n",
       "      <th>train_loss</th>\n",
       "      <th>valid_loss</th>\n",
       "      <th>error_rate</th>\n",
       "      <th>time</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <td>0</td>\n",
       "      <td>0.046743</td>\n",
       "      <td>0.010498</td>\n",
       "      <td>0.005413</td>\n",
       "      <td>00:19</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>"
      ],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "# CLICK ME\n",
    "from fastai2.vision.all import *\n",
    "path = untar_data(URLs.PETS)/'images'\n",
    "\n",
    "def is_cat(x): return x[0].isupper()\n",
    "dls = ImageDataLoaders.from_name_func(\n",
    "    path, get_image_files(path), valid_pct=0.2, seed=42,\n",
    "    label_func=is_cat, item_tfms=Resize(224))\n",
    "\n",
    "learn = cnn_learner(dls, resnet34, metrics=error_rate)\n",
    "learn.fine_tune(1)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Sidebar: This book was written in Jupyter Notebooks"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "2"
      ]
     },
     "execution_count": null,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "1+1"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "PILImage mode=RGB size=197x250"
      ]
     },
     "execution_count": null,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "img = PILImage.create('images/chapter1_cat_example.jpg')\n",
    "img"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### End sidebar"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "application/vnd.jupyter.widget-view+json": {
       "model_id": "7dd0d57c1c934519a602f74cfde6d7d1",
       "version_major": 2,
       "version_minor": 0
      },
      "text/plain": [
       "FileUpload(value={}, description='Upload')"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "uploader = widgets.FileUpload()\n",
    "uploader"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/html": [],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Is this a cat?: True; Probability it's a cat: 0.998037\n"
     ]
    }
   ],
   "source": [
    "img = PILImage.create(uploader.data[0])\n",
    "is_cat,_,probs = learn.predict(img, 2)\n",
    "print(f\"Is this a cat?: {is_cat}; Probability it's a cat: {probs[1].item():.6f}\")"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<fastai2.vision.core.PILImage image mode=RGB size=197x250 at 0x7F3882F23050>"
      ]
     },
     "execution_count": null,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "img"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### What is machine learning?"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "hide_input": true
   },
   "outputs": [
    {
     "data": {
      "image/svg+xml": [
       "<?xml version=\"1.0\" encoding=\"UTF-8\" standalone=\"no\"?>\n",
       "<!DOCTYPE svg PUBLIC \"-//W3C//DTD SVG 1.1//EN\"\n",
       " \"http://www.w3.org/Graphics/SVG/1.1/DTD/svg11.dtd\">\n",
       "<!-- Generated by graphviz version 2.40.1 (20161225.0304)\n",
       " -->\n",
       "<!-- Title: G Pages: 1 -->\n",
       "<svg width=\"285pt\" height=\"58pt\"\n",
       " viewBox=\"0.00 0.00 284.59 58.00\" xmlns=\"http://www.w3.org/2000/svg\" xmlns:xlink=\"http://www.w3.org/1999/xlink\">\n",
       "<g id=\"graph0\" class=\"graph\" transform=\"scale(1 1) rotate(0) translate(4 54)\">\n",
       "<title>G</title>\n",
       "<polygon fill=\"#ffffff\" stroke=\"transparent\" points=\"-4,4 -4,-54 280.5882,-54 280.5882,4 -4,4\"/>\n",
       "<!-- program -->\n",
       "<g id=\"node1\" class=\"node\">\n",
       "<title>program</title>\n",
       "<polygon fill=\"none\" stroke=\"#000000\" points=\"172.9942,-50 104.9942,-50 100.9942,-46 100.9942,0 168.9942,0 172.9942,-4 172.9942,-50\"/>\n",
       "<polyline fill=\"none\" stroke=\"#000000\" points=\"168.9942,-46 100.9942,-46 \"/>\n",
       "<polyline fill=\"none\" stroke=\"#000000\" points=\"168.9942,-46 168.9942,0 \"/>\n",
       "<polyline fill=\"none\" stroke=\"#000000\" points=\"168.9942,-46 172.9942,-50 \"/>\n",
       "<text text-anchor=\"middle\" x=\"136.9942\" y=\"-21.3\" font-family=\"Times,serif\" font-size=\"14.00\" fill=\"#000000\">program</text>\n",
       "</g>\n",
       "<!-- results -->\n",
       "<g id=\"node3\" class=\"node\">\n",
       "<title>results</title>\n",
       "<ellipse fill=\"none\" stroke=\"#000000\" cx=\"242.7912\" cy=\"-25\" rx=\"33.5952\" ry=\"18\"/>\n",
       "<text text-anchor=\"middle\" x=\"242.7912\" y=\"-21.3\" font-family=\"Times,serif\" font-size=\"14.00\" fill=\"#000000\">results</text>\n",
       "</g>\n",
       "<!-- program&#45;&gt;results -->\n",
       "<g id=\"edge2\" class=\"edge\">\n",
       "<title>program&#45;&gt;results</title>\n",
       "<path fill=\"none\" stroke=\"#000000\" d=\"M173.1077,-25C181.3637,-25 190.2284,-25 198.7746,-25\"/>\n",
       "<polygon fill=\"#000000\" stroke=\"#000000\" points=\"198.9789,-28.5001 208.9789,-25 198.9788,-21.5001 198.9789,-28.5001\"/>\n",
       "</g>\n",
       "<!-- inputs -->\n",
       "<g id=\"node2\" class=\"node\">\n",
       "<title>inputs</title>\n",
       "<ellipse fill=\"none\" stroke=\"#000000\" cx=\"32.4971\" cy=\"-25\" rx=\"32.4942\" ry=\"18\"/>\n",
       "<text text-anchor=\"middle\" x=\"32.4971\" y=\"-21.3\" font-family=\"Times,serif\" font-size=\"14.00\" fill=\"#000000\">inputs</text>\n",
       "</g>\n",
       "<!-- inputs&#45;&gt;program -->\n",
       "<g id=\"edge1\" class=\"edge\">\n",
       "<title>inputs&#45;&gt;program</title>\n",
       "<path fill=\"none\" stroke=\"#000000\" d=\"M65.2739,-25C73.2739,-25 81.9845,-25 90.4897,-25\"/>\n",
       "<polygon fill=\"#000000\" stroke=\"#000000\" points=\"90.7006,-28.5001 100.7006,-25 90.7005,-21.5001 90.7006,-28.5001\"/>\n",
       "</g>\n",
       "</g>\n",
       "</svg>\n"
      ],
      "text/plain": [
       "<graphviz.files.Source at 0x7f3882f294d0>"
      ]
     },
     "execution_count": null,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "gv('''program[shape=box3d width=1 height=0.7]\n",
    "inputs->program->results''')"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "hide_input": true
   },
   "outputs": [
    {
     "data": {
      "image/svg+xml": [
       "<?xml version=\"1.0\" encoding=\"UTF-8\" standalone=\"no\"?>\n",
       "<!DOCTYPE svg PUBLIC \"-//W3C//DTD SVG 1.1//EN\"\n",
       " \"http://www.w3.org/Graphics/SVG/1.1/DTD/svg11.dtd\">\n",
       "<!-- Generated by graphviz version 2.40.1 (20161225.0304)\n",
       " -->\n",
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       "<graphviz.files.Source at 0x7f387dbb6350>"
      ]
     },
     "execution_count": null,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "gv('''ordering=in\n",
    "model[shape=box3d width=1 height=0.7 label=architecture]\n",
    "inputs->model->predictions; parameters->model; labels->loss; predictions->loss\n",
    "loss->parameters[constraint=false label=update]''')"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### What our image recognizer did"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### What our image recognizer learned"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### What image recognizers can do"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### A bit more jargon"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Deep learning is not just for image classification"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/html": [
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: left;\">\n",
       "      <th>epoch</th>\n",
       "      <th>train_loss</th>\n",
       "      <th>valid_loss</th>\n",
       "      <th>time</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <td>0</td>\n",
       "      <td>3.094684</td>\n",
       "      <td>17.969349</td>\n",
       "      <td>00:02</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>"
      ],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "text/html": [
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: left;\">\n",
       "      <th>epoch</th>\n",
       "      <th>train_loss</th>\n",
       "      <th>valid_loss</th>\n",
       "      <th>time</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <td>0</td>\n",
       "      <td>2.240286</td>\n",
       "      <td>2.426627</td>\n",
       "      <td>00:02</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>1</td>\n",
       "      <td>2.102374</td>\n",
       "      <td>2.367601</td>\n",
       "      <td>00:02</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>2</td>\n",
       "      <td>1.996238</td>\n",
       "      <td>2.024536</td>\n",
       "      <td>00:02</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>3</td>\n",
       "      <td>1.905420</td>\n",
       "      <td>1.848707</td>\n",
       "      <td>00:02</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>4</td>\n",
       "      <td>1.823647</td>\n",
       "      <td>1.731563</td>\n",
       "      <td>00:02</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>5</td>\n",
       "      <td>1.746672</td>\n",
       "      <td>1.647273</td>\n",
       "      <td>00:02</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>6</td>\n",
       "      <td>1.683376</td>\n",
       "      <td>1.627241</td>\n",
       "      <td>00:02</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>7</td>\n",
       "      <td>1.634751</td>\n",
       "      <td>1.611713</td>\n",
       "      <td>00:02</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>"
      ],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "path = untar_data(URLs.CAMVID_TINY)\n",
    "dls = SegmentationDataLoaders.from_label_func(\n",
    "    path, bs=8, fnames = get_image_files(path/\"images\"),\n",
    "    label_func = lambda o: path/'labels'/f'{o.stem}_P{o.suffix}',\n",
    "    codes = np.loadtxt(path/'codes.txt', dtype=str)\n",
    ")\n",
    "\n",
    "learn = unet_learner(dls, resnet34)\n",
    "learn.fine_tune(8)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/html": [],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
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\n",
      "text/plain": [
       "<Figure size 504x576 with 6 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    }
   ],
   "source": [
    "learn.show_results(max_n=6, figsize=(7,8))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/html": [
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: left;\">\n",
       "      <th>epoch</th>\n",
       "      <th>train_loss</th>\n",
       "      <th>valid_loss</th>\n",
       "      <th>accuracy</th>\n",
       "      <th>time</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <td>0</td>\n",
       "      <td>0.615716</td>\n",
       "      <td>0.398760</td>\n",
       "      <td>0.820280</td>\n",
       "      <td>01:27</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>"
      ],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "text/html": [
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: left;\">\n",
       "      <th>epoch</th>\n",
       "      <th>train_loss</th>\n",
       "      <th>valid_loss</th>\n",
       "      <th>accuracy</th>\n",
       "      <th>time</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <td>0</td>\n",
       "      <td>0.291901</td>\n",
       "      <td>0.268219</td>\n",
       "      <td>0.897520</td>\n",
       "      <td>02:17</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>1</td>\n",
       "      <td>0.201469</td>\n",
       "      <td>0.207763</td>\n",
       "      <td>0.922560</td>\n",
       "      <td>02:20</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>2</td>\n",
       "      <td>0.146981</td>\n",
       "      <td>0.222368</td>\n",
       "      <td>0.918560</td>\n",
       "      <td>02:20</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>3</td>\n",
       "      <td>0.111359</td>\n",
       "      <td>0.197359</td>\n",
       "      <td>0.928360</td>\n",
       "      <td>02:11</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>"
      ],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "from fastai2.text.all import *\n",
    "\n",
    "dls = TextDataLoaders.from_folder(untar_data(URLs.IMDB), valid='test')\n",
    "learn = text_classifier_learner(dls, AWD_LSTM, drop_mult=0.5, metrics=accuracy)\n",
    "learn.fine_tune(4, 1e-2)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/html": [],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "text/plain": [
       "('pos', tensor(1), tensor([0.0041, 0.9959]))"
      ]
     },
     "execution_count": null,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "learn.predict(\"I really liked that movie!\")"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "hide_input": true
   },
   "outputs": [
    {
     "data": {
      "text/markdown": [
       "<h4 id=\"Learner.predict\" class=\"doc_header\"><code>Learner.predict</code><a href=\"https://github.com/fastai/fastai2/tree/master/fastai2/learner.py#L330\" class=\"source_link\" style=\"float:right\">[source]</a></h4>\n",
       "\n",
       "> <code>Learner.predict</code>(**`item`**, **`rm_type_tfms`**=*`None`*)\n",
       "\n",
       "Return the prediction on `item`, fully decoded, loss function decoded and probabilities\n",
       "\n",
       "<a href=\"https://dev.fast.ai/learner#Learner.predict\" target=\"_blank\" rel=\"noreferrer noopener\">Show in docs</a>"
      ],
      "text/plain": [
       "<IPython.core.display.Markdown object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "from IPython.display import display, HTML, Markdown\n",
    "md = show_doc(learn.predict, disp=False)\n",
    "md += f'\\n\\n<a href=\"https://dev.fast.ai/learner#Learner.predict\" target=\"_blank\" rel=\"noreferrer noopener\">Show in docs</a>'\n",
    "display(Markdown(md))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": [
    "from fastai2.tabular.all import *\n",
    "path = untar_data(URLs.ADULT_SAMPLE)\n",
    "\n",
    "dls = TabularDataLoaders.from_csv(path/'adult.csv', path, y_names=\"salary\",\n",
    "    cat_names = ['workclass', 'education', 'marital-status', 'occupation', 'relationship', 'race'],\n",
    "    cont_names = ['age', 'fnlwgt', 'education-num'],\n",
    "    procs = [Categorify, FillMissing, Normalize])\n",
    "\n",
    "learn = tabular_learner(dls, metrics=accuracy)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/html": [
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: left;\">\n",
       "      <th>epoch</th>\n",
       "      <th>train_loss</th>\n",
       "      <th>valid_loss</th>\n",
       "      <th>accuracy</th>\n",
       "      <th>time</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <td>0</td>\n",
       "      <td>0.359960</td>\n",
       "      <td>0.357917</td>\n",
       "      <td>0.831388</td>\n",
       "      <td>00:11</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>1</td>\n",
       "      <td>0.353458</td>\n",
       "      <td>0.349657</td>\n",
       "      <td>0.837991</td>\n",
       "      <td>00:10</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>2</td>\n",
       "      <td>0.338368</td>\n",
       "      <td>0.346997</td>\n",
       "      <td>0.843213</td>\n",
       "      <td>00:10</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>"
      ],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "learn.fit_one_cycle(3)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/html": [
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: left;\">\n",
       "      <th>epoch</th>\n",
       "      <th>train_loss</th>\n",
       "      <th>valid_loss</th>\n",
       "      <th>time</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <td>0</td>\n",
       "      <td>1.554056</td>\n",
       "      <td>1.428071</td>\n",
       "      <td>00:01</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>"
      ],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "text/html": [
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: left;\">\n",
       "      <th>epoch</th>\n",
       "      <th>train_loss</th>\n",
       "      <th>valid_loss</th>\n",
       "      <th>time</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <td>0</td>\n",
       "      <td>1.393103</td>\n",
       "      <td>1.361342</td>\n",
       "      <td>00:01</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>1</td>\n",
       "      <td>1.297930</td>\n",
       "      <td>1.159169</td>\n",
       "      <td>00:00</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>2</td>\n",
       "      <td>1.052705</td>\n",
       "      <td>0.827934</td>\n",
       "      <td>00:01</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>3</td>\n",
       "      <td>0.810124</td>\n",
       "      <td>0.668735</td>\n",
       "      <td>00:01</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>4</td>\n",
       "      <td>0.711552</td>\n",
       "      <td>0.627836</td>\n",
       "      <td>00:01</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>5</td>\n",
       "      <td>0.657402</td>\n",
       "      <td>0.611715</td>\n",
       "      <td>00:01</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>6</td>\n",
       "      <td>0.633079</td>\n",
       "      <td>0.605733</td>\n",
       "      <td>00:01</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>7</td>\n",
       "      <td>0.622399</td>\n",
       "      <td>0.602674</td>\n",
       "      <td>00:01</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>8</td>\n",
       "      <td>0.629075</td>\n",
       "      <td>0.601671</td>\n",
       "      <td>00:00</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <td>9</td>\n",
       "      <td>0.619955</td>\n",
       "      <td>0.601550</td>\n",
       "      <td>00:01</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>"
      ],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "from fastai2.collab import *\n",
    "path = untar_data(URLs.ML_SAMPLE)\n",
    "dls = CollabDataLoaders.from_csv(path/'ratings.csv')\n",
    "learn = collab_learner(dls, y_range=(0.5,5.5))\n",
    "learn.fine_tune(10)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/html": [],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "text/html": [
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: right;\">\n",
       "      <th></th>\n",
       "      <th>userId</th>\n",
       "      <th>movieId</th>\n",
       "      <th>rating</th>\n",
       "      <th>rating_pred</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <th>0</th>\n",
       "      <td>157</td>\n",
       "      <td>1200</td>\n",
       "      <td>4.0</td>\n",
       "      <td>3.558502</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>1</th>\n",
       "      <td>23</td>\n",
       "      <td>344</td>\n",
       "      <td>2.0</td>\n",
       "      <td>2.700709</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>2</th>\n",
       "      <td>19</td>\n",
       "      <td>1221</td>\n",
       "      <td>5.0</td>\n",
       "      <td>4.390801</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>3</th>\n",
       "      <td>430</td>\n",
       "      <td>592</td>\n",
       "      <td>3.5</td>\n",
       "      <td>3.944848</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>4</th>\n",
       "      <td>547</td>\n",
       "      <td>858</td>\n",
       "      <td>4.0</td>\n",
       "      <td>4.076881</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>5</th>\n",
       "      <td>292</td>\n",
       "      <td>39</td>\n",
       "      <td>4.5</td>\n",
       "      <td>3.753513</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>6</th>\n",
       "      <td>529</td>\n",
       "      <td>1265</td>\n",
       "      <td>4.0</td>\n",
       "      <td>3.349463</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>7</th>\n",
       "      <td>19</td>\n",
       "      <td>231</td>\n",
       "      <td>3.0</td>\n",
       "      <td>2.881087</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>8</th>\n",
       "      <td>475</td>\n",
       "      <td>4963</td>\n",
       "      <td>4.0</td>\n",
       "      <td>4.023387</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>9</th>\n",
       "      <td>130</td>\n",
       "      <td>260</td>\n",
       "      <td>4.5</td>\n",
       "      <td>3.979703</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>"
      ],
      "text/plain": [
       "<IPython.core.display.HTML object>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "learn.show_results()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Sidebar: Datasets: food for models"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### End sidebar"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## Validation sets and test sets"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Use judgment in defining test sets"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## A _Choose Your Own Adventure_ moment"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  }
 ],
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